Regulatory Challenges of AI Application in Watershed Pollution Control: An Analysis Framework Using the SETO Loop
Abstract
1. Introduction
2. Literature Review
2.1. Multi-Level Application of AI in Water Pollution Control
2.2. Technical Risks and Regulatory Challenges of AI Applications
2.3. Collaborative Governance Innovation and Breakthrough Direction
3. Materials and Methods
3.1. Scope
3.2. Existing Regulations
3.3. Tools
3.4. Organizational
4. Results
4.1. Determination of Regulatory Scope
4.2. Evaluation of Existing Regulations
4.3. Tool Selection
4.4. Organizational Design
5. Discussion
6. Conclusions and Policy Recommendations
Author Contributions
Funding
Data Availability Statement
Conflicts of Interest
References
- Wang, P.; Yao, J.; Wang, G.; Hao, F.; Shrestha, S.; Xue, B.; Peng, Y. Exploring the application of artificial intelligence technology for identification of water pollution characteristics and tracing the source of water quality pollutants. Sci. Total Environ. 2019, 693, 133440. [Google Scholar] [CrossRef]
 - Bhatt, D.; Swain, M.; Yadav, D. Artificial intelligence based detection and control strategies for river water pollution: A comprehensive review. J. Contam. Hydrol. 2025, 271, 104541. [Google Scholar] [CrossRef]
 - Bhati, A.; Hiran, K.K.; Vyas, A.K.; Mijwil, M.M.; Aljanabi, M.; Metwally, A.S.M.; Ahmad, H. Low cost artificial intelligence Internet of Things based water quality monitoring for rural areas. Internet Things 2024, 27, 101255. [Google Scholar] [CrossRef]
 - Sun, Y.; Wang, D.; Li, L.; Ning, R.; Yu, S.; Gao, N. Application of remote sensing technology in water quality monitoring: From traditional approaches to artificial intelligence. Water Res. 2024, 267, 122546. [Google Scholar] [CrossRef]
 - Hu, B.; Dai, Y.; Zhou, H.; Sun, Y.; Yu, H.; Dai, Y.; Zhou, P. Using artificial intelligence to rapidly identify microplastics pollution and predict microplastics environmental behaviors. J. Hazard. Mater. 2024, 474, 134865. [Google Scholar] [CrossRef]
 - Jin, H.; Kong, F.; Li, X.; Shen, J. Artificial intelligence in microplastic detection and pollution control. Environ. Res. 2024, 262, 119812. [Google Scholar] [CrossRef]
 - Keitemoge, M.K.; Onu, M.A.; Sadare, O.O.; Seedat, N.; Roopchund, R.; Moothi, K. Antibiotic Removal in South African Water Using Artificial Neural Networks and Adaptive Neuro-Fuzzy Inference System Models: A Review. S. Afr. J. Chem. Eng. 2025, 54, 371–389. [Google Scholar] [CrossRef]
 - Maurya, B.M.; Yadav, N.; Amudha, T.; Satheeshkumar, J.; Sangeetha, A.; Parthasarathy, V.; Vellingiri, B. Artificial intelligence and machine learning algorithms in the detection of heavy metals in water and wastewater: Methodological and ethical challenges. Chemosphere 2024, 353, 141474. [Google Scholar] [CrossRef] [PubMed]
 - Ding, Y.; Sun, Q.; Lin, Y.; Ping, Q.; Peng, N.; Wang, L.; Li, Y. Application of artificial intelligence in (waste)water disinfection: Emphasizing the regulation of disinfection by-products formation and residues prediction. Water Res. 2024, 253, 121267. [Google Scholar] [CrossRef]
 - Alaswad, S.O.; Almatrafi, E. Artificial intelligence applications in forward osmosis for water treatment: Recent developments and research directions. Desalination Water Treat. 2024, 319, 100551. [Google Scholar] [CrossRef]
 - Mohd Adnan, M.A.; Majnis, M.F.; Wan Md Adnan, W.N.; Abdullah, N.H.; Baharom, A.S.; Muhd Julkapli, N. Deep insights into the integration of Artificial Neural Networks (ANNs) for predicting the photocatalytic activities of metal-based catalysts in water pollutant reduction. J. Environ. Chem. Eng. 2025, 13, 116350. [Google Scholar] [CrossRef]
 - Krishnan, A.; Sundaram, T.; Nagappan, B.; Devarajan, Y.; Bhumika. Integrating artificial intelligence in nanomembrane systems for advanced water desalination. Results Eng. 2024, 24, 103321. [Google Scholar] [CrossRef]
 - Morante-Carballo, F.; Arcentales-Rosado, M.; Caicedo-Potosí, J.; Carrión-Mero, P. Artificial intelligence applications in hydrological studies and ecological restoration of watersheds: A systematic review. Watershed Ecol. Environ. 2025, 7, 230–248. [Google Scholar] [CrossRef]
 - Ou, Z.; He, F.; Zhu, Y.; Lu, P.; Wang, L. Analysis of driving factors of water demand based on explainable artificial intelligence. J. Hydrol. Reg. Stud. 2023, 47, 101396. [Google Scholar] [CrossRef]
 - Sow, S.; Ranjan, S.; Seleiman, M.F.; Alkharabsheh, H.M.; Kumar, M.; Kumar, N.; Wasonga, D.O. Artificial Intelligence for Maximizing Agricultural Input Use Efficiency: Exploring Nutrient, Water and Weed Management Strategies. Phyton-Int. J. Exp. Bot. 2024, 93, 1569–1598. [Google Scholar] [CrossRef]
 - Wang, P.G.; Wu, X.X.; Chen, Y. Ai-driven approaches to flood risk management: Overcoming data bias and enhancing decision-making. Clim. Risk Manag. 2025, 50, 100752. [Google Scholar] [CrossRef]
 - Sapitang, M.; Dullah, H.; Latif, S.D.; Ng, J.L.; Huang, Y.F.; Malek, M.B.A.; Ahmed, A.N. Application of integrated artificial intelligence geographical information system in managing water resources: A review. Remote Sens. Appl. Soc. Environ. 2024, 35, 101236. [Google Scholar] [CrossRef]
 - Kamyab, H.; Khademi, T.; Chelliapan, S.; SaberiKamarposhti, M.; Rezania, S.; Yusuf, M.; Ahn, Y. The latest innovative avenues for the utilization of artificial Intelligence and big data analytics in water resource management. Results Eng. 2023, 20, 101566. [Google Scholar] [CrossRef]
 - Eldin Elzain, H.; Abdalla, O.; Al-Maktoumi, A.; Kacimov, A.; Eltayeb, M. A novel approach to forecast water table rise in arid regions using stacked ensemble machine learning and deep artificial intelligence models. J. Hydrol. 2024, 640, 131668. [Google Scholar] [CrossRef]
 - Otamendi, U.; Maiza, M.; Olaizola, I.G.; Sierra, B.; Florez, M.; Quartulli, M. Integrated water resource management in the Segura Hydrographic Basin: An artificial intelligence approach. J. Environ. Manag. 2024, 370, 122526. [Google Scholar] [CrossRef]
 - Infant, S.S.; Vickram, S.; Saravanan, A.; Mathan Muthu, C.M.; Yuarajan, D. Explainable artificial intelligence for sustainable urban water systems engineering. Results Eng. 2025, 25, 104349. [Google Scholar] [CrossRef]
 - Shen, G.; Sun, L.; Zhang, B.; Tan, N. Uncovering water quality impact mechanisms through interpretable hybrid artificial intelligence models. J. Water Process Eng. 2025, 76, 108145. [Google Scholar] [CrossRef]
 - Kundu, S.; Datta, P.; Pal, P.; Ghosh, K.; Das, A.; Das, B.K. Unveiling the hidden connections: Using explainable artificial intelligence to assess water quality criteria in nine giant rivers. J. Clean. Prod. 2025, 492, 144861. [Google Scholar] [CrossRef]
 - Monaco, A.; Caruso, M.; Bellantuono, L.; Cazzolla Gatti, R.; Fania, A.; Lacalamita, A.; Bellotti, R. Measuring water pollution effects on antimicrobial resistance through explainable artificial intelligence. Environ. Pollut. 2025, 367, 125620. [Google Scholar] [CrossRef]
 - Tian, P.; Xu, Z.; Fan, W.; Lai, H.; Liu, Y.; Yang, P.; Yang, Z. Exploring the effects of climate change and urban policies on lake water quality using remote sensing and explainable artificial intelligence. J. Clean. Prod. 2024, 475, 143649. [Google Scholar] [CrossRef]
 - Ross, J.; Hammouche, S.; Chen, Y.; Rockall, A.G.; Alabed, S.; Chen, M.; Shelmerdine, S. Beyond regulatory compliance: Evaluating radiology artificial intelligence applications in deployment. Clin. Radiol. 2024, 79, 338–345. [Google Scholar] [CrossRef] [PubMed]
 - El-Sayed, A.; Lovat, L.B.; Ahmad, O.F. Clinical Implementation of Artificial Intelligence in Gastroenterology: Current Landscape, Regulatory Challenges, and Ethical Issues. Gastroenterology 2025, 169, 518–530. [Google Scholar] [CrossRef] [PubMed]
 - Cabanas, A.M.; Martín-Escudero, P.; Pagán, J.; Mery, D. Technical and regulatory challenges in artificial intelligence-based pulse oximetry: A proposed development pipeline. Br. J. Anaesth. 2025, 134, 1295–1299. [Google Scholar] [CrossRef]
 - Harvey, H.B.; Gowda, V. Regulatory Issues and Challenges to Artificial Intelligence Adoption. Radiol. Clin. N. Am. 2021, 59, 1075–1083. [Google Scholar] [CrossRef]
 - Liang, N.L.; Chung, T.K.; Vorp, D.A. The regulatory environment for artificial intelligence–enabled devices in the United States. Semin. Vasc. Surg. 2023, 36, 435–439. [Google Scholar] [CrossRef] [PubMed]
 - Thakkar, S.; Slikker, W.; Yiannas, F.; Silva, P.; Blais, B.; Chng, K.R.; Tong, W. Artificial intelligence and real-world data for drug and food safety—A regulatory science perspective. Regul. Toxicol. Pharmacol. 2023, 140, 105388. [Google Scholar] [CrossRef] [PubMed]
 - Chau, M. Ethical, legal, and regulatory landscape of artificial intelligence in Australian healthcare and ethical integration in radiography: A narrative review. J. Med. Imaging Radiat. Sci. 2024, 55, 101733. [Google Scholar] [CrossRef] [PubMed]
 - Wall, L.D. Some financial regulatory implications of artificial intelligence. J. Econ. Bus. 2018, 100, 55–63. [Google Scholar] [CrossRef]
 - Gounden, S. Artificial intelligence in anatomical pathology—Ethical and regulatory considerations. Pathology 2024, 56, S3. [Google Scholar] [CrossRef]
 - Pantanowitz, L.; Hanna, M.; Pantanowitz, J.; Lennerz, J.; Henricks, W.H.; Shen, P.; Rashidi, H.H. Regulatory Aspects of Artificial Intelligence and Machine Learning. Mod. Pathol. 2024, 37, 100609. [Google Scholar] [CrossRef]
 - Chen, S.; Lobo, B.C. Regulatory and Implementation Considerations for Artificial Intelligence. Otolaryngol. Clin. N. Am. 2024, 57, 871–886. [Google Scholar] [CrossRef]
 - Chen, W.; Teng, W.; Kuo, C.B.; Yen, Y.; Lian, J.; Sing, M.; Chen, P. Regulatory Insights From 27 Years of Artificial Intelligence/Machine Learning–Enabled Medical Device Recalls in the United States: Implications for Future Governance. JMIR Med. Inform. 2025, 13, e67552. [Google Scholar] [CrossRef]
 - Nti, E.K.; Cobbina, S.J.; Attafuah, E.E.; Senanu, L.D.; Amenyeku, G.; Gyan, M.A.; Safo, A. Water pollution control and revitalization using advanced technologies: Uncovering artificial intelligence options towards environmental health protection, sustainability and water security. Heliyon 2023, 9, e18170. [Google Scholar] [CrossRef]
 - Olawade, D.B.; Wada, O.Z.; Ige, A.O.; Egbewole, B.I.; Olojo, A.; Oladapo, B.I. Artificial intelligence in environmental monitoring: Advancements, challenges, and future directions. Hyg. Environ. Health Adv. 2024, 12, 100114. [Google Scholar] [CrossRef]
 - Sun, E.; Littenberg, G. Reimbursement and Regulatory Landscape for Artificial Intelligence in Medical Technology. Gastrointest. Endosc. Clin. N. Am. 2025, 35, 469–484. [Google Scholar] [CrossRef]
 - Aquino, Y.S.J.; Rogers, W.A.; Jacobson, S.L.S.; Richards, B.; Houssami, N.; Woode, M.E.; Carter, S.M. Defining change: Exploring expert views about the regulatory challenges in adaptive artificial intelligence for healthcare. Health Policy Technol. 2024, 13, 100892. [Google Scholar] [CrossRef]
 - Shah, N.; Mourby, M.; Matin, R.N. Regulatory and Legal Considerations with Artificial Intelligence in Dermatology. Dermatol. Clin. 2025, 43, 611–623. [Google Scholar] [CrossRef]
 - Lin, Y.; Liu, Y. Industrial pollution control based on artificial intelligence: A synergistic model using social network analysis and machine learning. J. Innov. Knowl. 2025, 10, 100777. [Google Scholar] [CrossRef]
 - Bagheri, M.; Farshforoush, N.; Bagheri, K.; Shemirani, A.I. Applications of artificial intelligence technologies in water environments: From basic techniques to novel tiny machine learning systems. Process Saf. Environ. Prot. 2023, 180, 10–22. [Google Scholar] [CrossRef]
 - Ruiz, I.; Pompeu, J.; Ruano, A.; Franco, P.; Balbi, S.; Sanz, M.J. Combined artificial intelligence, sustainable land management, and stakeholder engagement for integrated landscape management in Mediterranean watersheds. Environ. Sci. Policy 2023, 145, 217–227. [Google Scholar] [CrossRef]
 - Caldas De Lima, J.B.; Griffin, I.; Gemmell, J.S.; Davis, K.; Amanamba, U.; Zanjani, N.A.; Hochhegger, B. Ethical, Regulatory, and Practical Challenges in Artificial Intelligence-Driven Chest Imaging. Semin. Roentgenol. 2025, 60, 422–438. [Google Scholar] [CrossRef]
 - Duan, Q.; Zhang, Q.; Quan, X.; Zhang, H.; Huang, L. Innovations of water pollution traceability technology with artificial intelligence. Earth Crit. Zone 2024, 1, 100009. [Google Scholar] [CrossRef]
 - Nie, C.; Huang, Z.; Feng, Y. Evaluating the pollution abatement effect of artificial intelligence policy: Evidence from a quasi-natural experiment in China. Urban Clim. 2025, 61, 102402. [Google Scholar] [CrossRef]
 - Meng, L.; Yan, Y.; Jing, H.; Yousuf Jat Baloch, M.; Du, S.; Du, S. Large-scale groundwater pollution risk assessment research based on artificial intelligence technology: A case study of Shenyang City in Northeast China. Ecol. Indic. 2024, 169, 112915. [Google Scholar] [CrossRef]
 - Patel, A.; Kethavath, A.; Kushwaha, N.L.; Naorem, A.; Jagadale, M.; Sheetal, K.R.; Renjith, P.S. Review of artificial intelligence and internet of things technologies in land and water management research during 1991–2021: A bibliometric analysis. Eng. Appl. Artif. Intell. 2023, 123, 106335. [Google Scholar] [CrossRef]
 - Dian, J.; Li, S.; Song, T. Achieving the synergy of pollution and carbon emission reductions: Can artificial intelligence applications work? China Econ. Rev. 2025, 91, 102389. [Google Scholar] [CrossRef]
 - Zare, A.; Ablakimova, N.; Kaliyev, A.A.; Mussin, N.M.; Tanideh, N.; Rahmanifar, F.; Tamadon, A. An update for various applications of Artificial Intelligence (AI) for detection and identification of marine environmental pollutions: A bibliometric analysis and systematic review. Mar. Pollut. Bull. 2024, 206, 116751. [Google Scholar] [CrossRef]
 - Pérez-Beltrán, C.H.; Robles, A.D.; Rodriguez, N.A.; Ortega-Gavilán, F.; Jiménez-Carvelo, A.M. Artificial intelligence and water quality: From drinking water to wastewater. TrAC Trends Anal. Chem. 2024, 172, 117597. [Google Scholar] [CrossRef]
 - Rarima, R.; Veerasingam, S. Towards cleaner waters: Advancing pollutant detection with artificial intelligence-assisted digital in-line holographic microscopy. Opt. Laser Technol. 2025, 192, 113402. [Google Scholar] [CrossRef]
 - Luo, Q.; Feng, P. Exploring artificial intelligence and urban pollution emissions: "Speed bump" or "accelerator" for sustainable development? J. Clean. Prod. 2024, 463, 142739. [Google Scholar] [CrossRef]
 - Ma, X.; Weng, S.; Zhao, X.; Li, J.; Haider, S. Investigating the impact of artificial intelligence development on water pollution in China. Gondwana Res. 2024, 132, 182–192. [Google Scholar] [CrossRef]
 - Yu, W.; Zhou, Z.; Yang, Y.; Li, X.; Lu, Z.; Liu, Y.; Liu, Y. Artificial intelligence in chemical dosing for drinking water treatment: A systematic review of algorithmic applications, implementation frameworks, and future challenges. J. Environ. Chem. Eng. 2025, 13, 118936. [Google Scholar] [CrossRef]
 - Kreps, S.; Rao, A. AI and the Regulatory Challenge: A New Framework Using the SETO Loop; Working Paper; SSRN: Rochester, NY, USA, 2023. [Google Scholar]
 - GB/T 41867-2022; Information Technology—Artificial Intelligence—Terminology. State Administration for Market Regulation, Standardization Administration of China: Beijing, China, 2022.
 



| Application Area | Specific Technologies | Key Functions & Contributions | Representative Methods/Algorithms | 
|---|---|---|---|
| Water Quality Monitoring | IoT + Lightweight AI | Enables real-time, low-cost monitoring of key indicators (pH, dissolved oxygen, heavy metals) in rural/remote areas | Machine Learning Algorithms | 
| Large-Scale Dynamic Monitoring | Remote Sensing + AI | Achieves dynamic, large-scale tracking of water quality phenomena (algal blooms, oil spills, eutrophication) | Hyperspectral Imaging, Deep Learning Models | 
| Pollutant Identification | AI for Image & Spectral Analysis | Enables high-precision detection of emerging pollutants (microplastics, antibiotics, heavy metals) | Convolutional Neural Networks (CNN), Support Vector Machines (SVM) | 
| Pollution Control & Process Optimization | AI for Process Control | Optimizes treatment processes (advanced oxidation, membrane treatment, catalytic degradation) and predicts outcomes | Neural Networks, Fuzzy Inference Systems | 
| System Management & Decision Support | Hydrological Modeling + AI | Supports watershed simulation, ecological restoration, water resource allocation, and agricultural non-point source pollution control | Various AI Modeling & Simulation Methods | 
| Intelligent Watershed Management | Digital Twin + AI | Provides a virtual simulation system for predicting pollution diffusion and optimizing treatment strategies | Digital twin modeling, AI simulation | 
| Dimension | SETO Loop | Adaptive Governance | PESTEL Analysis | Regulatory Sandboxes | 
|---|---|---|---|---|
| Primary Focus | Building a systematic, full-cycle regulatory regime for technology. | Managing complexity and uncertainty in social-ecological systems. | Scanning and assessing the external macro-environment. | Testing specific technologies or business models in a safe space. | 
| Core Objective | To create a dynamic, layered, and effective regulatory pathway for emerging technologies. | To maintain system resilience through continuous learning and institutional adjustment. | To identify key opportunities and threats in the external environment for strategic planning. | To foster innovation and inform regulation via temporary regulatory exemptions. | 
| Level of Analysis | Meso- to Macro-level (bridging specific tech domains with macro-regulation). | Macro-level (Focus on the structure and process of the governance system). | Macro-level (Analysis of broad external factors). | Micro-level (Targets a single firm, product, or service). | 
| Temporal Orientation | Prospective & Continuous (an ongoing, evolving management cycle). | Iterative & Long-term (emphasizes feedback loops and long-term adaptation). | Present & Trend Analysis (descriptive and diagnostic). | Short-term & Experimental (has a defined testing period). | 
| Core Process/Structure | Four-stage Loop: 1. Scoping 2. Existing Regulation Assessment 3. Tool Selection 4. Organizational Design | Iterative Loop: Learn -> Adjust -> Practice -> Monitor -> Re-learn | Six Factors: Political, Economic, Social, Technological, Environmental, Legal | Linear Process: Apply -> Select -> Test -> Evaluate -> Exit | 
| Relation to Innovation | Actively guides and systematically integrates innovation into the regulatory fabric. | Accommodates innovation and change through institutional flexibility. | Treats innovation as an external factor to be analyzed. | Directly promotes innovation by temporarily relaxing rules. | 
| Role in Your Research | Core Analytical Framework for systematically proposing AI watershed governance solutions. | Guiding Philosophy whose iterative principles align with the SETO loop. | A Preliminary Tool applicable in the “Scoping” phase to identify regulatory drivers. | A Concrete Policy Tool to be adopted during the “Tool Selection” phase. | 
| Name of Laws and Regulations | Type/Level | Publication/Revision Time | Main Related Content | Advantages | Disadvantages/Limitations | 
|---|---|---|---|---|---|
| Environmental Protection Law of the People’s Republic of China | National Law (Basic Comprehensive Law) | Issued in 1989 and revised in 2014 | Basic principles such as environmental monitoring, information disclosure, and public participation have been established. | As the fundamental law in the field of environment, it provides the highest level of legal basis and framework for all environmental protection activities, including the application of AI technology. | Lag and principle: Revised in 2014, it did not foresee the development of AI technology, lacked operational guidelines for specific activities such as data-driven and algorithmic decision-making, and had indirect and vague legal constraints. | 
| Water Pollution Prevention and Control Law of the People’s Republic of China | National Law (Domain Law) | Issued in 1984, revised for the second time in 2017 | Clearly requires the establishment of water environment quality monitoring and water pollutant discharge monitoring systems. | Emphasis was placed on the legal requirements for water environment monitoring, providing specific legal support for the deployment of AI water quality monitoring systems and data applications in the field. | Static regulatory orientation: The provisions focus on the management of fixed pollution sources and regular monitoring, which is difficult to adapt to the needs of AI dynamic real-time warning and traceability. No regulations have been made for the quality certification of monitoring data and algorithm models. | 
| Data Security Law of the People’s Republic of China | National Law (General Law) | Issued in 2021 | Establish a data classification and grading management system, an important data export security assessment, etc. | Listing environmental monitoring data as important data provides a top-level legal framework for its security management, which helps prevent data leakage and abuse. | Lack of industry regulations: It is a universal law that does not establish specific rules for the specificity of environmental data, and strict data export restrictions may hinder necessary international environmental research and cooperation. | 
| Personal Information Protection Law of the People’s Republic of China | National Law (General Law) | Issued in 2021 | Standardize personal information processing activities and safeguard personal information rights and interests. | If information that can identify specific individuals is collected in environmental monitoring (such as accurately located pollution victim information), this method can provide a solid basis for protection. | Limited scope of application: The vast majority of environmental monitoring data belong to environmental element information rather than personal information, and this method has insufficient regulatory coverage for such data. | 
| Interim Measures for the Management of Generative Artificial Intelligence Services | Departmental regulations (jointly issued by seven departments including the Cyberspace Administration of China) | Issued in 2023 | Standardize the development, provision, and use of generative AI services, and require effective measures to improve the quality of training data. | This provides preliminary compliance guidelines for the application of generative AI in the environmental field, emphasizing the authenticity and accuracy of content. | Narrow scope: only applicable to generative AI, unable to cover more extensive application scenarios in environmental governance, such as predictive AI, decision optimization AI, etc. | 
| Regulations on Ecological Environment Monitoring | Administrative regulations | A draft for soliciting opinions has been released, but it has not yet been officially released. | The draft aims to standardize ecological environment monitoring behavior and ensure the quality of monitoring data. | It is expected that for the first time, monitoring activities will be systematically regulated at the regulatory level, which is expected to provide a clearer basis for the legality and quality requirements of AI monitoring data. | Not yet effective: As of now, the regulation is still in the formulation stage and lacks practical legal effect. Even if it is introduced, it remains uncertain whether it can proactively cover AI algorithm regulation. | 
| National standards such as GB/T 41867-2022 “Information Technology—Terminology for Artificial Intelligence” [59] | Recommended National Standards | Issued in 2022 | Provided basic terminology, concepts, and reference frameworks in the field of AI. | Providing a unified technical language and basic framework for the research and application of AI technology in the environmental field is conducive to promoting technological interconnectivity and industrial development. | Non-mandatory: As a recommended standard for GB/T, it does not have a legally binding force and can be voluntarily adopted by enterprises. Strong foundation: mostly basic universal standards, lacking specialized standards for environmental application scenarios such as intelligent water quality monitoring equipment and predictive model performance. | 
| Name of Laws and Regulations | Type/Level | Publication/Revision Time | Main Related Content | Advantages | Disadvantages/Limitations | 
|---|---|---|---|---|---|
| Clean Water Act (CWA) | Federal Statute (Core Environmental Law) | Enacted in 1972, amended multiple times | Establishes the National Pollutant Discharge Elimination System (NPDES) permit program.  Authorizes EPA to set water quality standards and criteria. Requires states to identify impaired waters and develop Total Maximum Daily Loads (TMDLs).  | Provides the fundamental legal framework for water pollution control and basin management, serving as the ultimate basis for all water data (including AI-generated or used data).  Creates a clear application for AI in point source compliance monitoring and data validation.  | Technologically Static: The framework is based on 1970s technology and does not anticipate AI, lacking direct provisions for algorithmic accountability or data quality certification.  Regulatory Gaps: Weaker regulation of non-point source pollution, where AI has significant predictive potential but lacks strong legal drivers.  | 
| National Environmental Policy Act (NEPA) | Federal Statute (Procedural Law) | Enacted 1970 | Requires federal agencies to prepare detailed Environmental Impact Statements (EIS) for major actions significantly affecting the environment. | Provides a procedural driver for using AI tools in environmental modeling and predictive analysis (e.g., forecasting a project’s impact on a watershed) during project planning and decision-making. | Procedural over Substantive: NEPA mandates the consideration of impacts but does not mandate a specific outcome. AI-driven findings can be documented but ultimately ignored in the final decision.  Process-heavy: Can be litigious and slow, without specific standards for AI models, leaving them open to legal challenge.  | 
| Executive Order on the Safe, Secure, and Trustworthy Development and Use of AI (EO 14110) | Executive Order (Legally binding directive for the federal government) | October 2023 | Directs federal agencies to manage AI risks and promote innovation.  Specifically instructs agencies like DOE and EPA to leverage AI for climate, environment, and critical infrastructure resilience. Emphasizes the development of AI standards and testbeds.  | Top-Down Impetus: Provides strong political momentum and a clear policy direction for AI applications in the environmental sector.  Cross-Agency Collaboration: Aims to break down data silos, potentially enriching the data available for basin-scale AI models.  | Limited Scope: Primarily binds federal agencies, with only indirect influence on the private sector and state governments.  Implementation-Dependent: Effectiveness hinges on follow-through by individual agencies, which can be affected by changing administrations and budgets.  | 
Disclaimer/Publisher’s Note: The statements, opinions and data contained in all publications are solely those of the individual author(s) and contributor(s) and not of MDPI and/or the editor(s). MDPI and/or the editor(s) disclaim responsibility for any injury to people or property resulting from any ideas, methods, instructions or products referred to in the content.  | 
© 2025 by the authors. Licensee MDPI, Basel, Switzerland. This article is an open access article distributed under the terms and conditions of the Creative Commons Attribution (CC BY) license (https://creativecommons.org/licenses/by/4.0/).
Share and Cite
Zhai, R.; Hua, C. Regulatory Challenges of AI Application in Watershed Pollution Control: An Analysis Framework Using the SETO Loop. Water 2025, 17, 3134. https://doi.org/10.3390/w17213134
Zhai R, Hua C. Regulatory Challenges of AI Application in Watershed Pollution Control: An Analysis Framework Using the SETO Loop. Water. 2025; 17(21):3134. https://doi.org/10.3390/w17213134
Chicago/Turabian StyleZhai, Rongbing, and Chao Hua. 2025. "Regulatory Challenges of AI Application in Watershed Pollution Control: An Analysis Framework Using the SETO Loop" Water 17, no. 21: 3134. https://doi.org/10.3390/w17213134
APA StyleZhai, R., & Hua, C. (2025). Regulatory Challenges of AI Application in Watershed Pollution Control: An Analysis Framework Using the SETO Loop. Water, 17(21), 3134. https://doi.org/10.3390/w17213134
        